Towards an AI Coach to Infer Team Mental Model Alignment in Healthcare
Author(s)
Seo, Sangwon; Kennedy-Metz, Lauren R; Zenati, Marco A; Shah, Julie A; Dias, Roger D; Unhelkar, Vaibhav V; ... Show more Show less
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Shared mental models are critical to team success; however, in practice, team members may have misaligned models due to a variety of factors. In safety-critical domains (e.g., aviation, healthcare), lack of shared mental models can lead to preventable errors and harm. Towards the goal of mitigating such preventable errors, here, we present a Bayesian approach to infer misalignment in team members' mental models during complex healthcare task execution. As an exemplary application, we demonstrate our approach using two simulated team-based scenarios, derived from actual teamwork in cardiac surgery. In these simulated experiments, our approach inferred model misalignment with over 75% recall, thereby providing a building block for enabling computer-assisted interventions to augment human cognition in the operating room and improve teamwork.
Date issued
2021-05-14Department
Massachusetts Institute of Technology. Department of Aeronautics and AstronauticsJournal
2021 IEEE Conference on Cognitive and Computational Aspects of Situation Management (CogSIMA)
Publisher
IEEE
Citation
Seo, Sangwon, Kennedy-Metz, Lauren R, Zenati, Marco A, Shah, Julie A, Dias, Roger D et al. 2021. "Towards an AI Coach to Infer Team Mental Model Alignment in Healthcare." 2021 IEEE Conference on Cognitive and Computational Aspects of Situation Management (CogSIMA), 2021.
Version: Author's final manuscript